Unhealthy behaviors, e.g., physical inactivity and unhealthful food choice, are the primary healthcare cost drivers in developed countries. Pervasive computational, sensing, and communication technology provided by smartphones and smartwatches have made it possible to support individuals in their everyday lives to develop healthier lifestyles. In this paper, we propose an exercise recommendation system that also predicts individual success rates. The system, consisting of two inter-connected recurrent neural networks (RNNs), uses the history of workouts to recommend the next workout activity for each individual. The system then predicts the probability of successful completion of the predicted activity by the individual. The prediction accuracy of this interconnected-RNN model is assessed on previously published data from a four-week mobile health experiment and is shown to improve upon previous predictions from a computational cognitive model.
翻译:发达国家的主要保健费用驱动因素是身体不活跃和食物选择不健康等不健康的行为。智能手机和智能观察提供的普及计算、感测和通信技术使得有可能支持个人日常生活发展更健康的生活方式。在本文中,我们提议了一个也预测个人成功率的练习建议系统。该系统由两个相互关联的经常性神经网络组成,利用修补历史来建议每个人的下一个锻炼活动。该系统然后预测个人成功完成预期活动的概率。这一相互关联的RNN模型的预测准确性是根据一个为期四周的流动健康实验以前公布的数据进行评估的,并显示根据一个计算认知模型的先前预测,该系统将改进先前的预测。